Assessing superficial temporal artery-middle cerebral artery anastomosis patency using FLOW 800 hemodynamics.

FLOW 800 cerebral strokes extracranial-intracranial arterial bypass indocyanine green fluorescence angiography machine learning moyamoya disease vascular disorders

Journal

Journal of neurosurgery
ISSN: 1933-0693
Titre abrégé: J Neurosurg
Pays: United States
ID NLM: 0253357

Informations de publication

Date de publication:
16 Aug 2024
Historique:
received: 24 03 2024
accepted: 29 04 2024
medline: 16 8 2024
pubmed: 16 8 2024
entrez: 16 8 2024
Statut: aheadofprint

Résumé

The objective of this study was to investigate the use of indocyanine green videoangiography with FLOW 800 hemodynamic parameters intraoperatively during superficial temporal artery-middle cerebral artery (STA-MCA) bypass surgery to predict patency prior to anastomosis performance. A retrospective and exploratory data analysis was conducted using FLOW 800 software prior to anastomosis to assess four regions of interest (ROIs; proximal and distal recipients and adjacent and remote gyri) for four hemodynamic parameters (speed, delay, rise time, and time to peak). Medical records were used to classify patients into flow and no-flow groups based on immediate or perioperative anastomosis patency. Hemodynamic parameters were compared using univariate and multivariate analyses. Principal component analysis was used to identify high risk of no flow (HRnf) and low risk of no flow (LRnf) groups, correlated with prospective angiographic follow-ups. Machine learning models were fitted to predict patency using FLOW 800 features, and the a posteriori effect of complication risk of those features was computed. A total of 39 cases underwent STA-MCA bypass surgery with complete FLOW 800 data collection. Thirty-five cases demonstrated flow after anastomosis revascularization and were compared with 4 cases with no flow after revascularization. Proximal and distal recipient speeds were significantly different between the no-flow and flow groups (proximal: 238.3 ± 120.8 and 138.5 ± 93.6, respectively [p < 0.001]; distal: 241.0 ± 117.0 and 142.1 ± 103.8, respectively [p < 0.05]). Based on principal component analysis, the HRnf group (n = 10) was characterized by high-flow speed (> 75th percentile) in all ROIs, whereas the LRnf group (n = 10) had contrasting patterns. In prospective long-term follow-up, 6 of 9 cases in the HRnf group, including the original no-flow cases, had no or low flow, whereas 8 of 8 cases in the LRnf group maintained robust flow. Machine learning models predicted patency failure with a mean F1 score of 0.930 and consistently relied on proximal recipient speed as the most important feature. Computation of posterior likelihood showed a 95.29% chance of patients having long-term patency given a lower proximal speed. These results suggest that a high proximal speed measured in the recipient vessel prior to anastomosis can elevate the risk of perioperative no flow and long-term reduction of flow. With an increased dataset size, continued FLOW 800-based ROI metric analysis could be used to guide intraoperative anastomosis site selection prior to anastomosis and predict patency outcome.

Identifiants

pubmed: 39151199
doi: 10.3171/2024.4.JNS24713
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

1-10

Auteurs

Karl L Sangwon (KL)

Departments of1Neurosurgery and.

Matthew Nguyen (M)

3Department of Neurosurgery, UVA Health, Charlottesville, Virginia; and.

Daniel D Wiggan (DD)

Departments of1Neurosurgery and.

Bruck Negash (B)

Departments of1Neurosurgery and.

Daniel A Alber (DA)

Departments of1Neurosurgery and.

Xujin Chris Liu (XC)

Departments of1Neurosurgery and.

Albert Liu (A)

Departments of1Neurosurgery and.

Corinne Rabbin-Birnbaum (C)

Departments of1Neurosurgery and.

Vera Sharashidze (V)

Departments of1Neurosurgery and.

Jacob Baranoski (J)

Departments of1Neurosurgery and.

Eytan Raz (E)

Departments of1Neurosurgery and.
2Radiology, NYU Langone Health, New York, New York.

Maksim Shapiro (M)

Departments of1Neurosurgery and.
2Radiology, NYU Langone Health, New York, New York.

Caleb Rutledge (C)

Departments of1Neurosurgery and.

Peter Kim Nelson (PK)

Departments of1Neurosurgery and.
2Radiology, NYU Langone Health, New York, New York.

Howard Riina (H)

Departments of1Neurosurgery and.

Jonathan Russin (J)

4Department of Neurosurgery, Neurorestoration Center, USC Keck Hospital, Los Angeles, California.

Eric K Oermann (EK)

Departments of1Neurosurgery and.

Erez Nossek (E)

Departments of1Neurosurgery and.

Classifications MeSH